Using correlation proximity graphs to study phenotypic integration
Characterizing and comparing the covariance or correlation structure of phenotypic traits lies at the heart of studies concerned with multivariate evolution. I describe an approach that represents the geometric structure of a correlation matrix as a type of proximity graph called a Correlation Proximity graph. Correlation Proximity graphs provide a compact representation of the geometric relationships inherent in correlation matrices, and these graphs have simple and intuitive properties. I demonstrate how this framework can be used to study patterns of phenotypic integration by employing this approach to compare phenotypic and additive genetic correlation matrices within and between species. I also outline a graph-based method for testing whether an inferred correlation proximity graph is one of a number of possible models that are consistent with a "soft" biological hypothesis. © Springer Science+Business Media, LLC 2008.
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Related Subject Headings
- Evolutionary Biology
- 3109 Zoology
- 3104 Evolutionary biology
- 3103 Ecology
- 0603 Evolutionary Biology
Citation
Published In
DOI
ISSN
Publication Date
Volume
Issue
Start / End Page
Related Subject Headings
- Evolutionary Biology
- 3109 Zoology
- 3104 Evolutionary biology
- 3103 Ecology
- 0603 Evolutionary Biology